Interpretable Gallbladder Ultrasound Diagnosis: A Lightweight Web-Mobile Software Platform with Real-Time XAI
This provides accessible and trustworthy diagnostic support for clinicians in interpreting gallbladder ultrasound, though it is incremental as it applies existing methods to a specific medical domain.
The paper tackled the challenge of early and accurate gallbladder disease detection from ultrasound images by developing an AI-driven diagnostic software with a hybrid deep learning model, achieving up to 99.85% accuracy with only 2.24M parameters.
Early and accurate detection of gallbladder diseases is crucial, yet ultrasound interpretation is challenging. To address this, an AI-driven diagnostic software integrates our hybrid deep learning model MobResTaNet to classify ten categories, nine gallbladder disease types and normal directly from ultrasound images. The system delivers interpretable, real-time predictions via Explainable AI (XAI) visualizations, supporting transparent clinical decision-making. It achieves up to 99.85% accuracy with only 2.24M parameters. Deployed as web and mobile applications using HTML, CSS, JavaScript, Bootstrap, and Flutter, the software provides efficient, accessible, and trustworthy diagnostic support at the point of care